
Overview
The PPE Detector for Employee Safety is a real-time computer vision model for identifying PPE non-compliance in working environments. The solution is a tool to ensure worker safety on building sites, fabrication lines, laboratories, steel, oil & gas enterprises, and other industrial environments where safety rules should be strictly followed. The solution is trained on the dataset manually selected and annotated by the VITechLab team. It detects the absence of any of the following objects on a person: Coat, Glasses, Glove, Mask, Helmet. It works with live streams from CCTV cameras.
We also have a ready to use software, PPE Monitoring Platform: https://aws.amazon.com/marketplace/pp/B08BT5CV2FÂ
We provide free support during the trial period! After you've succeeded with the subscription, reach out at: support@vitechlab.comÂ
Highlights
- Trained on a synthetic dataset of 100,000 images and fine-tuned on the VITech Lab privately collected a dataset of real images from IP/CCTV cameras. The training dataset was considerably enlarged with augmented data. A synthetic dataset was collected with domain randomization to fit real images. The model was trained on images of 300x300 resolution and accepts images of any size that are resized internally.
- Uses a custom designed in VITech object detection architecture to detect people and different equipment they wear. The inference time is dependent on the number of people detected in a single image.
- Need a custom-made solution for video/image analysis? Or maybe need a custom PPE compliance detector? Reach us at support@vitechlab.com
Details
Unlock automation with AI agent solutions

Features and programs
Financing for AWS Marketplace purchases
Pricing
Free trial
Dimension | Description | Cost/host/hour |
|---|---|---|
ml.p3.2xlarge Inference (Batch) Recommended | Model inference on the ml.p3.2xlarge instance type, batch mode | $20.00 |
ml.p3.2xlarge Inference (Real-Time) Recommended | Model inference on the ml.p3.2xlarge instance type, real-time mode | $5.00 |
ml.p2.xlarge Inference (Batch) | Model inference on the ml.p2.xlarge instance type, batch mode | $20.00 |
ml.m4.4xlarge Inference (Batch) | Model inference on the ml.m4.4xlarge instance type, batch mode | $20.00 |
ml.m5.4xlarge Inference (Batch) | Model inference on the ml.m5.4xlarge instance type, batch mode | $20.00 |
ml.m5.12xlarge Inference (Batch) | Model inference on the ml.m5.12xlarge instance type, batch mode | $20.00 |
ml.m4.16xlarge Inference (Batch) | Model inference on the ml.m4.16xlarge instance type, batch mode | $20.00 |
ml.p2.16xlarge Inference (Batch) | Model inference on the ml.p2.16xlarge instance type, batch mode | $20.00 |
ml.m5.2xlarge Inference (Batch) | Model inference on the ml.m5.2xlarge instance type, batch mode | $20.00 |
ml.p3.16xlarge Inference (Batch) | Model inference on the ml.p3.16xlarge instance type, batch mode | $20.00 |
Vendor refund policy
We do not offer refunds at this time.
How can we make this page better?
Legal
Vendor terms and conditions
Content disclaimer
Delivery details
Amazon SageMaker model
An Amazon SageMaker model package is a pre-trained machine learning model ready to use without additional training. Use the model package to create a model on Amazon SageMaker for real-time inference or batch processing. Amazon SageMaker is a fully managed platform for building, training, and deploying machine learning models at scale.
Version release notes
Version 1.0 released
Additional details
Inputs
- Summary
Supported content types: image/jpeg
This model accepts images in the mime-type specified above.
The image must be at least 300x300. The model resizes the image to the size specified by the user before performing the inference. Better results are achieved with 16:9 image proportions.
Content type: text/json
For every image, the model returns a single JSON file with all the detections.
The model returns JSON object, that includes an array with individual elements for each face detected. Each element has three attributes:
- box_points: includes the bounding box around the detected face. Each bounding box consists of four numbers in [X1 Y1 X2 Y2] format in the source image coordinates.
- classes: dictionary with class names requested and probabilities. Probability score that the person in this bounding box has a requested item. Probability is given in percents (0..100 range)
Prediction method can take additional parameter “detection-elements”: List of the classes that model is requested to detect in people: 'no_helmet', 'no_glasses', 'no_glove' - for manufacturing environment 'lab_no_coat', 'lab_no_glasses', 'lab_no_glove', 'lab_no_mask' - for healthcare environment
We recommend using this model for real-time inference for better utilization of the endpoint. Optionally, batch transform is also available.
You can find more details here: https://github.com/VITechLab/aws-sagemaker-examples/tree/master/General-Purpose-PPE-DetectorÂ
- Input MIME type
- image/jpeg
Resources
Support
Vendor support
If you have any issues or feature requests, please write to us, and we will be happy to help you as soon as possible. We can also create custom software and models optimised for your specific use case. Reach us at: support@vitechlab.comÂ
AWS infrastructure support
AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.
Similar products



